Publication | Open Access
Phase-field modeling of fracture with physics-informed deep learning
57
Citations
53
References
2024
Year
We explore the potential of the deep Ritz method to learn complex fracture processes such as quasistatic crack nucleation, propagation, kinking, branching, and coalescence within the unified variational framework of phase-field modeling of brittle fracture. We elucidate the challenges related to the neural-network-based approximation of the energy landscape, and the ability of an optimization approach to reach the correct energy minimum, and we discuss the choices in the construction and training of the neural network which prove to be critical to accurately and efficiently capture all the relevant fracture phenomena. The developed method is applied to several benchmark problems and the results are shown to be in qualitative and quantitative agreement with the finite element solution. The robustness of the approach is tested by using neural networks with different initializations. • We develop an approach to learn phase-field fracture using the deep Ritz method. • The approach facilitates learning of crack nucleation, propagation, kinking, branching, and coalescence. • The results are robust and in good agreement with the FEA solution.
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